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A novel MobileNet with selective depth multiplier to compromise complexity and accuracyopen accessA novel MobileNet with selective depth multiplier to compromise complexity and accuracy

Other Titles
A novel MobileNet with selective depth multiplier to compromise complexity and accuracy
Authors
Kim, Chan YungUm, Kwi SeobHeo, Seo Weon
Issue Date
1-Jan-2022
Publisher
WILEY
Keywords
convolutional neural network; depth multiplier; depthwise separable convolution; MobileNet; selective depth multiplier
Citation
ETRI JOURNAL, v.45, no.4, pp.666 - 677
Journal Title
ETRI JOURNAL
Volume
45
Number
4
Start Page
666
End Page
677
URI
https://scholarworks.bwise.kr/hongik/handle/2020.sw.hongik/30518
DOI
10.4218/etrij.2022-0103
ISSN
1225-6463
Abstract
In the last few years, convolutional neural networks (CNNs) have demonstrated good performance while solving various computer vision problems. However, since CNNs exhibit high computational complexity, signal processing is performed on the server side. To reduce the computational complexity of CNNs for edge computing, a lightweight algorithm, such as a MobileNet, is proposed. Although MobileNet is lighter than other CNN models, it commonly achieves lower classification accuracy. Hence, to find a balance between complexity and accuracy, additional hyperparameters for adjusting the size of the model have recently been proposed. However, significantly increasing the number of parameters makes models dense and unsuitable for devices with limited computational resources. In this study, we propose a novel MobileNet architecture, in which the number of parameters is adaptively increased according to the importance of feature maps. We show that our proposed network achieves better classification accuracy with fewer parameters than the conventional MobileNet.
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